亚利桑那州 Cove Wash 流域牲畜暴露潜力的个体级时空模型。

IF 2.7 Q1 GEOGRAPHY
Annals of GIS Pub Date : 2023-01-01 Epub Date: 2022-05-30 DOI:10.1080/19475683.2022.2075935
Zhuoming Liu, Yan Lin, Joseph Hoover, Daniel Beene, Perry H Charley, Neilroy Singer
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引用次数: 1

摘要

个人接触研究存在不确定性问题,主要源于个人行为的不确定性。在时空暴露分析和方法的基础上,本研究提出了一种新的时空建模方法,将行为分类纳入考虑不确定性的方法中,以估计个体牲畜的暴露潜力。这种新方法被应用于美国西南部一个部落社区的社区研究项目中。该社区项目研究了在包含 52 个废弃铀矿 (AUM) 的流域中驯养牲畜的地理空间和时间放牧模式。因此,该研究旨在:1)将家畜的全球定位系统(GPS)数据分为三个行为分组--放牧、旅行或休息;2)计算家畜的日累积暴露潜能值;3)评估有无行为分类的计算方法的性能。利用 Lotek Litetrack GPS 项圈,我们在 2019 年春季和夏季收集了两群绵羊和山羊 20 分钟间隔的数据。对 GPS 数据的分析和建模表明,在考虑动物行为的概率/不确定性时,每个羊群的个体累积暴露潜力没有显著差异。然而,在不考虑动物行为或概率/不确定性的情况下计算每日累积暴露潜能值时,观察到群内动物之间存在显著差异,这与牲畜所有者报告的动物放牧行为不符。这些结果表明,建议采用的方法(包括具有概率/不确定性的行为分组)更接近于牲畜所有者报告的观察到的放牧行为。研究结果可用于今后在放牧牲畜可能会遇到环境污染物的社区进行干预和制定补救措施的政策。这项研究还展示了一种基于地理信息系统 (GIS) 的新型稳健框架,用于估算环境污染物的累积暴露潜力,并为解决社区关于牲畜暴露于 AUMs 的问题提供了重要信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Individual level spatial-temporal modelling of exposure potential of livestock in the Cove Wash watershed, Arizona.

Personal exposure studies suffer from uncertainty issues, largely stemming from individual behavior uncertainties. Built on spatial-temporal exposure analysis and methods, this study proposed a novel approach to spatial-temporal modeling that incorporated behavior classifications taking into account uncertainties, to estimate individual livestock exposure potential. The new approach was applied in a community-based research project with a Tribal community in the southwest United States. The community project examined the geospatial and temporal grazing patterns of domesticated livestock in a watershed containing 52 abandoned uranium mines (AUMs). Thus, the study aimed to 1) classify Global Positioning System (GPS) data from livestock into three behavior subgroups - grazing, traveling or resting; 2) calculate the daily cumulative exposure potential for livestock; 3) assess the performance of the computational method with and without behavior classifications. Using Lotek Litetrack GPS collars, we collected data at a 20-minute-interval for 2 flocks of sheep and goats during the spring and summer of 2019. Analysis and modeling of GPS data demonstrated no significant difference in individual cumulative exposure potential within each flock when animal behaviors with probability/uncertainties were considered. However, when daily cumulative exposure potential was calculated without consideration of animal behavior or probability/uncertainties, significant differences among animals within a herd were observed, which does not match animal grazing behaviors reported by livestock owners. These results suggest that the proposed method of including behavior subgroups with probability/uncertainties more closely resembled the observed grazing behaviors reported by livestock owners. Results from the research may be used for future intervention and policy-making on remediation efforts in communities where grazing livestock may encounter environmental contaminants. This research also demonstrates a novel robust geographic information system (GIS)-based framework to estimate cumulative exposure potential to environmental contaminants and provides critical information to address community questions on livestock exposure to AUMs.

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来源期刊
Annals of GIS
Annals of GIS Multiple-
CiteScore
8.30
自引率
2.00%
发文量
31
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